Differential privacy in data publication and analysis
Data privacy has been an important research topic in the security, theory and database communities in the last few decades. However, many existing studies have restrictive assumptions regarding the adversary's prior knowledge, meaning that they preserve individuals' privacy only when the a...
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sg-ntu-dr.10356-989962020-05-28T07:17:31Z Differential privacy in data publication and analysis Yang, Yin Zhang, Zhenjie Miklau, Gerome Winslett, Marianne Xiao, Xiaokui School of Computer Engineering International Conference on Management of Data (2012) Data privacy has been an important research topic in the security, theory and database communities in the last few decades. However, many existing studies have restrictive assumptions regarding the adversary's prior knowledge, meaning that they preserve individuals' privacy only when the adversary has rather limited background information about the sensitive data, or only uses certain kinds of attacks. Recently, differential privacy has emerged as a new paradigm for privacy protection with very conservative assumptions about the adversary's prior knowledge. Since its proposal, differential privacy had been gaining attention in many fields of computer science, and is considered among the most promising paradigms for privacy-preserving data publication and analysis. In this tutorial, we will motivate its introduction as a replacement for other paradigms, present the basics of the differential privacy model from a database perspective, describe the state of the art in differential privacy research, explain the limitations and shortcomings of differential privacy, and discuss open problems for future research. 2013-07-31T06:59:05Z 2019-12-06T20:02:08Z 2013-07-31T06:59:05Z 2019-12-06T20:02:08Z 2012 2012 Conference Paper Yang, Y., Zhang, Z., Miklau, G., Winslett, M., & Xiao, X. (2012). Differential privacy in data publication and analysis. Proceedings of the 2012 international conference on Management of Data - SIGMOD '12, 601-606. https://hdl.handle.net/10356/98996 http://hdl.handle.net/10220/12636 10.1145/2213836.2213910 en |
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Data privacy has been an important research topic in the security, theory and database communities in the last few decades. However, many existing studies have restrictive assumptions regarding the adversary's prior knowledge, meaning that they preserve individuals' privacy only when the adversary has rather limited background information about the sensitive data, or only uses certain kinds of attacks. Recently, differential privacy has emerged as a new paradigm for privacy protection with very conservative assumptions about the adversary's prior knowledge. Since its proposal, differential privacy had been gaining attention in many fields of computer science, and is considered among the most promising paradigms for privacy-preserving data publication and analysis. In this tutorial, we will motivate its introduction as a replacement for other paradigms, present the basics of the differential privacy model from a database perspective, describe the state of the art in differential privacy research, explain the limitations and shortcomings of differential privacy, and discuss open problems for future research. |
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School of Computer Engineering |
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School of Computer Engineering Yang, Yin Zhang, Zhenjie Miklau, Gerome Winslett, Marianne Xiao, Xiaokui |
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Conference or Workshop Item |
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Yang, Yin Zhang, Zhenjie Miklau, Gerome Winslett, Marianne Xiao, Xiaokui |
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Yang, Yin Zhang, Zhenjie Miklau, Gerome Winslett, Marianne Xiao, Xiaokui Differential privacy in data publication and analysis |
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Yang, Yin |
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Differential privacy in data publication and analysis |
title_short |
Differential privacy in data publication and analysis |
title_full |
Differential privacy in data publication and analysis |
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Differential privacy in data publication and analysis |
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Differential privacy in data publication and analysis |
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differential privacy in data publication and analysis |
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2013 |
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https://hdl.handle.net/10356/98996 http://hdl.handle.net/10220/12636 |
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